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Deep learning approach for prediction of impact peak appearance at ground reaction force signal of running activity

机译:运行活性地面反应力信号预测冲击峰貌预测的深度学习方法

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摘要

Protruding impact peak is one of the features of vertical ground reaction force (GRF) that is related to injury risk while running. The present research is dedicated to predicting GRF impact peak appearance by setting a binary classification problem. Kinematic data, namely a number of raw signals in the sagittal plane, collected by the Vicon motion capture system (Oxford Metrics Group, UK) were employed as predictors. Therefore, the input data for the predictive model are presented as a multi-channel time series. Deep learning techniques, namely five convolutional neural network (CNN) models were applied to the binary classification analysis, based on a Multi-Layer Perceptron (MLP) classifier, support vector machine (SVM), logistic regression,k-nearest neighbors (kNN), and random forest algorithms. SVM, logistic regression, and random forest classifiers demonstrated performances that do not statistically significantly differ. The best classification accuracy achieved is 81.09% +/- 2.58%. Due to good performance of the models, this study serves as groundwork for further application of deep learning approaches to predicting kinetic information based on this kind of input data.
机译:突出的冲击峰是垂直接地反作用力(GRF)的特征之一,其在跑步时与伤害风险有关。本研究专用于通过设定二进制分类问题来预测GRF冲击峰值外观。在VICON运动捕获系统(牛津度量集团,英国)收集的矢状型数据,即广场平面中的许多原始信号被用作预测因子。因此,预测模型的输入数据被呈现为多通道时间序列。深度学习技术,即五个卷积神经网络(CNN)模型应用于二进制分类分析,基于多层的Perceptron(MLP)分类器,支持向量机(SVM),逻辑回归,K-最近邻居(KNN)和随机森林算法。 SVM,Logistic回归和随机森林分类器显示出没有统计学意义的表现。实现的最佳分类准确性为81.09%+/- 2.58%。由于模型的良好性能,本研究是基于这种输入数据的进一步应用深度学习方法的基础,以进一步应用深度学习方法。

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